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Forecast of Yearly Stock Returns Based on Adaboost Integration Algorithm

机译:基于AdaBoost集成算法的年度股票回报预测

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Some existing studies use one kind of forecasting variables and Fama-MacBeth Regression to predict stock returns and find very modest predictability. To get better predictability, Adaboost integration algorithm, which is a classic machine learning algorithm and can use multiple kinds of forecasting variables, is introduced to predict yearly stock returns of all the firms of A-Share market from 2011 to 2015. The predictability is considerably improved. The average yearly out-of-sample error rate from 2013 to 2015 is 22%. The average yearly out-of-sample error rate from 2011 to 2015 is 27%. By analyzing data of the five years we find phenomena as following. First, the most important forecasting variable is different in each year when the market index shows different trend. Second, industry category plays very important role in every year. Meanwhile, other important forecasting variables of the five years include trade volume, full shares and tradable shares, Price Book Ratio and net asset per share, which represent market, size, valuation and fundamental respectively.
机译:现有的一些研究使用一种预测变量和法玛 - 麦克白回归来预测股票收益,并找到非常温和的可预测性。为了获得更好的可预测性,Adaboost的积分算法,这是一个经典的机器学习算法,并可以使用多种类型的预测变量,引入预测A股市场的所有企业的年度股票回报率从2011年至2015年的预测是相当改进。平均每年外的样本错误率2013至15年为22 %。平均每年外的样本错误率2011年至2015年为27 %。通过分析五年的数据,我们发现的现象如下。首先,最重要的预测变量是在每年的不同,当市场指数表现出不同的趋势。二,行业类别中起着每年非常重要的作用。同时,五年等重要预测变量包括交易量,全股和流通股,价格与账面价值比率和每股净资产,它们分别代表市场,规模,价值和根本。

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